Martel-Pelletier Johanne, Pelletier Jean-Pierre
Osteoarthritis Research Unit, University of Montreal Hospital Research Centre (CRCHUM), 900 Saint-Denis, R11.412B, Montreal, QC H2X 0A9, Canada.
Int J Mol Sci. 2025 May 15;26(10):4748. doi: 10.3390/ijms26104748.
Osteoarthritis (OA) is a prevalent and disabling chronic disease, with knee OA being the most common form, affecting approximately 73% of individuals over 55 years. Traditional clinical assessments often fail to predict knee structural progression accurately, highlighting the need for improved prognostic methods. This perspective explores the complexity of stratifying knee OA patients based on rapid structural progression. It underscores the importance of such early identification to enable timely and personalized intervention and optimize disease-modifying OA drug clinical trial design, as many trial participants show minimal progression, complicating the assessment of treatment efficacy. We highlight the potential of machine learning (ML) and deep learning (DL) in overcoming this prognostic challenge, as these methodologies enhance classification/stratification capabilities by leveraging multidimensional data and capturing the intricate relationships between diverse features. These include panels of biochemical markers and imaging markers, such as those from magnetic resonance imaging (MRI), as integrating MRI data into ML/DL prognostic models enhances such prediction performance. These automated ML/DL models will offer a transformative approach to stratifying knee OA patients and represent a paradigm shift in disease management. Ultimately, ML/DL applications will not only improve patient outcomes but will also promote innovation in OA research, clinical practice, and therapeutics.
骨关节炎(OA)是一种常见且致残的慢性疾病,其中膝关节OA最为常见,影响着约73%的55岁以上人群。传统的临床评估往往无法准确预测膝关节结构进展,这凸显了改进预后方法的必要性。本文探讨了基于快速结构进展对膝关节OA患者进行分层的复杂性。强调了这种早期识别对于实现及时和个性化干预以及优化改善病情的OA药物临床试验设计的重要性,因为许多试验参与者进展极小,使得治疗效果评估变得复杂。我们强调机器学习(ML)和深度学习(DL)在克服这一预后挑战方面的潜力,因为这些方法通过利用多维数据并捕捉不同特征之间的复杂关系来增强分类/分层能力。这些数据包括生化标志物和成像标志物组合,如来自磁共振成像(MRI)的标志物,因为将MRI数据整合到ML/DL预后模型中可提高预测性能。这些自动化的ML/DL模型将为膝关节OA患者分层提供一种变革性方法,并代表疾病管理的范式转变。最终,ML/DL应用不仅将改善患者预后,还将推动OA研究、临床实践和治疗学的创新。